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Survey on the Loss Function of Deep Learning in Face Recognition

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摘要 With the continuous development of face recognition network,the selection of loss function plays an increasingly important role in improving accuracy.The loss function of face recognition network needs to minimize the intra-class distance while expanding the inter-class distance.So far,one of our mainstream loss function optimization methods is to add penalty terms,such as orthogonal loss,to further constrain the original loss function.The other is to optimize using the loss based on angular/cosine margin.The last is Triplet loss and a new type of joint optimization based on HST Loss and ACT Loss.In this paper,based on the three methods with good practical performance and the joint optimization method,various loss functions are thoroughly reviewed.
出处 《Journal of Information Hiding and Privacy Protection》 2021年第1期29-45,共17页 信息隐藏与隐私保护杂志(英文)
基金 This work was supported in part by the National Natural Science Foundation of China(Grant No.41875184) Innovation Team of“Six Talent Peaks”In Jiangsu Province(Grant No.TD-XYDXX-004).
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